重新思考基于脑电图的非侵入性脑接口:建模和分析

Gaurav Gupta, S. Pequito, P. Bogdan
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引用次数: 29

摘要

脑接口是一种网络物理系统,旨在通过感知机制从(物理)大脑中获取信息,提取有关潜在过程的信息,并据此做出决定/执行。尽管如此,大脑接口仍处于起步阶段,但随着几项推动其发展的计划的发布(例如埃隆·马斯克的NeuraLink和Facebook的“大脑打字”),它们很快就会走向成熟。这促使我们重新审视基于脑电图的非侵入性脑接口的设计。具体来说,当前的方法需要高度熟练的神经功能方法和基于证据的关于特定信号特征的先验知识,以及从神经生理学的角度对其进行解释。此后,我们建议揭开这些方法的神秘面纱,因为我们建议利用新的时变复杂网络模型,使我们具备潜在过程的分形动态特征。随后,可以从系统的角度解释所提出的复杂网络模型的参数,并依次使用机器学习算法和/或使用控制系统理论确定的驱动定律进行分类。此外,所提出的系统识别方法和技术的计算复杂性可与目前使用的基于脑电图的脑接口相媲美,从而实现类似的在线性能。此外,我们预计所提出的模型和方法也适用于其他侵入性和非侵入性技术。最后,我们在真实的脑电图数据集上对该方法进行了演示和实验评估,以评估和验证所提出的方法。即使在训练样本较少的情况下,分类准确率也很高。
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Re-Thinking EEG-Based Non-Invasive Brain Interfaces: Modeling and Analysis
Brain interfaces are cyber-physical systems that aim to harvest information from the (physical) brain through sensing mechanisms, extract information about the underlying processes, and decide/actuate accordingly. Nonetheless, the brain interfaces are still in their infancy, but reaching to their maturity quickly as several initiatives are released to push forward their development (e.g., NeuraLink by Elon Musk and `typing-by-brain' by Facebook). This has motivated us to revisit the design of EEG-based non-invasive brain interfaces. Specifically, current methodologies entail a highly skilled neuro-functional approach and evidence-based a priori knowledge about specific signal features and their interpretation from a neuro-physiological point of view. Hereafter, we propose to demystify such approaches, as we propose to leverage new time-varying complex network models that equip us with a fractal dynamical characterization of the underlying processes. Subsequently, the parameters of the proposed complex network models can be explained from a system's perspective, and, consecutively, used for classification using machine learning algorithms and/or actuation laws determined using control system's theory. Besides, the proposed system identification methods and techniques have computational complexities comparable with those currently used in EEG-based brain interfaces, which enable comparable online performances. Furthermore, we foresee that the proposed models and approaches are also valid using other invasive and non-invasive technologies. Finally, we illustrate and experimentally evaluate this approach on real EEG-datasets to assess and validate the proposed methodology. The classification accuracies are high even on having less number of training samples.
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